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Anomalous crowd behavior detection and localization in video surveillance

机译:视频监控中异常人群行为检测与定位

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In this paper, we focus on the problem of detection and localization of crowd escape anomalous behaviors in video surveillance systems. The scheme proposed can not only detect the abnormal events which have been studied, but also detect the possible location of abnormal events. People usually instinctively escape from a place where abnormal or dangerous events occur. Based on this inference, a novel algorithm of detecting the divergent center is proposed: The divergent center indicates possible place where abnormal events occur. The model of crowd motion in both the normal and abnormal situations has been made according to the proposed method. Intersections of vector are obtained through solving the straight line equation sets, where the straight line Equation sets are determined by the location and direction of motion vector which are calculated by the optical flow. Then the dense regions of intersection sets, i.e., the divergent center, are obtained by using the distance segmentation method, the threshold method and the graphical method. Escape detection is finally judged according to the speed and energy of motion and the divergent center. Experiments on UMN datasets and other real videos show that the proposed method is valid on crowd escape behavior detection.
机译:在本文中,我们专注于视频监控系统中人群逃生异常行为的检测与定位问题。该方案不仅可以检测研究的异常事件,还可以检测异常事件的可能位置。人们通常本能地从发生异常或危险事件的地方逃脱。基于该推断,提出了一种检测发散中心的新算法:发散中心表示可能发生异常事件的可能位置。根据所提出的方法,制造了正常情况下的人群运动模型。通过求解直线方程组来获得向量的交叉点,其中直线方程组由由光学流计算的运动矢量的位置和方向确定。然后,通过使用距离分割方法,阈值方法和图形方法,获得交叉组的致密区域,即发散中心。最终根据运动和发散中心的速度和能量来判断逃逸检测。在UMN数据集和其他真实视频上的实验表明,该方法对人群逃生行为检测有效。

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